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Design of art teaching multimedia system based on genetic algorithms and computer network

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Abstract

The application of multimedia technology and the development of computer networks always affect the lifestyle and behavioral habits of modern people and also affect the education and learning methods of modern people. The genetic algorithm is called the form of calculation of the evolution algorithm, and it has the characteristics of parallelism and overallity and space search. This form is gradually brought into a large-scale cluster system. The article comprehensively considers the time, reliability, algorithm bandwidth, cost, and demand display of each individual from four different aspects, and designs an art teaching multimedia system in the form of adaptive functions to ensure the quality of teaching services. Finally, this article explores the design and development of multimedia networks in art teaching, based on the design of an art teaching courseware system. R&D forms mainly include: preparation and production of online courseware, development of online courseware, the operation and programming of online courseware, and the test and evaluation of online courseware. This design system research shows that the multimedia network system design under the art teaching is very important, which is the basis of the whole network teaching. For the system design and research of the whole art teaching understanding, it is the need to change and innovate technology, and also the only way for art design.

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Jing, C. Design of art teaching multimedia system based on genetic algorithms and computer network. Soft Comput 27, 6823–6833 (2023). https://doi.org/10.1007/s00500-023-08114-y

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  • DOI: https://doi.org/10.1007/s00500-023-08114-y

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